• Research article
  • Open access
  • Published: 06 February 2017

Blended learning effectiveness: the relationship between student characteristics, design features and outcomes

  • Mugenyi Justice Kintu   ORCID: orcid.org/0000-0002-4500-1168 1 , 2 ,
  • Chang Zhu 2 &
  • Edmond Kagambe 1  

International Journal of Educational Technology in Higher Education volume  14 , Article number:  7 ( 2017 ) Cite this article

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This paper investigates the effectiveness of a blended learning environment through analyzing the relationship between student characteristics/background, design features and learning outcomes. It is aimed at determining the significant predictors of blended learning effectiveness taking student characteristics/background and design features as independent variables and learning outcomes as dependent variables. A survey was administered to 238 respondents to gather data on student characteristics/background, design features and learning outcomes. The final semester evaluation results were used as a measure for performance as an outcome. We applied the online self regulatory learning questionnaire for data on learner self regulation, the intrinsic motivation inventory for data on intrinsic motivation and other self-developed instruments for measuring the other constructs. Multiple regression analysis results showed that blended learning design features (technology quality, online tools and face-to-face support) and student characteristics (attitudes and self-regulation) predicted student satisfaction as an outcome. The results indicate that some of the student characteristics/backgrounds and design features are significant predictors for student learning outcomes in blended learning.

Introduction

The teaching and learning environment is embracing a number of innovations and some of these involve the use of technology through blended learning. This innovative pedagogical approach has been embraced rapidly though it goes through a process. The introduction of blended learning (combination of face-to-face and online teaching and learning) initiatives is part of these innovations but its uptake, especially in the developing world faces challenges for it to be an effective innovation in teaching and learning. Blended learning effectiveness has quite a number of underlying factors that pose challenges. One big challenge is about how users can successfully use the technology and ensuring participants’ commitment given the individual learner characteristics and encounters with technology (Hofmann, 2014 ). Hofmann adds that users getting into difficulties with technology may result into abandoning the learning and eventual failure of technological applications. In a report by Oxford Group ( 2013 ), some learners (16%) had negative attitudes to blended learning while 26% were concerned that learners would not complete study in blended learning. Learners are important partners in any learning process and therefore, their backgrounds and characteristics affect their ability to effectively carry on with learning and being in blended learning, the design tools to be used may impinge on the effectiveness in their learning.

This study tackles blended learning effectiveness which has been investigated in previous studies considering grades, course completion, retention and graduation rates but no studies regarding effectiveness in view of learner characteristics/background, design features and outcomes have been done in the Ugandan university context. No studies have also been done on how the characteristics of learners and design features are predictors of outcomes in the context of a planning evaluation research (Guskey, 2000 ) to establish the effectiveness of blended learning. Guskey ( 2000 ) noted that planning evaluation fits in well since it occurs before the implementation of any innovation as well as allowing planners to determine the needs, considering participant characteristics, analyzing contextual matters and gathering baseline information. This study is done in the context of a plan to undertake innovative pedagogy involving use of a learning management system (moodle) for the first time in teaching and learning in a Ugandan university. The learner characteristics/backgrounds being investigated for blended learning effectiveness include self-regulation, computer competence, workload management, social and family support, attitude to blended learning, gender and age. We investigate the blended learning design features of learner interactions, face-to-face support, learning management system tools and technology quality while the outcomes considered include satisfaction, performance, intrinsic motivation and knowledge construction. Establishing the significant predictors of outcomes in blended learning will help to inform planners of such learning environments in order to put in place necessary groundwork preparations for designing blended learning as an innovative pedagogical approach.

Kenney and Newcombe ( 2011 ) did their comparison to establish effectiveness in view of grades and found that blended learning had higher average score than the non-blended learning environment. Garrison and Kanuka ( 2004 ) examined the transformative potential of blended learning and reported an increase in course completion rates, improved retention and increased student satisfaction. Comparisons between blended learning environments have been done to establish the disparity between academic achievement, grade dispersions and gender performance differences and no significant differences were found between the groups (Demirkol & Kazu, 2014 ).

However, blended learning effectiveness may be dependent on many other factors and among them student characteristics, design features and learning outcomes. Research shows that the failure of learners to continue their online education in some cases has been due to family support or increased workload leading to learner dropout (Park & Choi, 2009 ) as well as little time for study. Additionally, it is dependent on learner interactions with instructors since failure to continue with online learning is attributed to this. In Greer, Hudson & Paugh’s study as cited in Park and Choi ( 2009 ), family and peer support for learners is important for success in online and face-to-face learning. Support is needed for learners from all areas in web-based courses and this may be from family, friends, co-workers as well as peers in class. Greer, Hudson and Paugh further noted that peer encouragement assisted new learners in computer use and applications. The authors also show that learners need time budgeting, appropriate technology tools and support from friends and family in web-based courses. Peer support is required by learners who have no or little knowledge of technology, especially computers, to help them overcome fears. Park and Choi, ( 2009 ) showed that organizational support significantly predicts learners’ stay and success in online courses because employers at times are willing to reduce learners’ workload during study as well as supervisors showing that they are interested in job-related learning for employees to advance and improve their skills.

The study by Kintu and Zhu ( 2016 ) investigated the possibility of blended learning in a Ugandan University and examined whether student characteristics (such as self-regulation, attitudes towards blended learning, computer competence) and student background (such as family support, social support and management of workload) were significant factors in learner outcomes (such as motivation, satisfaction, knowledge construction and performance). The characteristics and background factors were studied along with blended learning design features such as technology quality, learner interactions, and Moodle with its tools and resources. The findings from that study indicated that learner attitudes towards blended learning were significant factors to learner satisfaction and motivation while workload management was a significant factor to learner satisfaction and knowledge construction. Among the blended learning design features, only learner interaction was a significant factor to learner satisfaction and knowledge construction.

The focus of the present study is on examining the effectiveness of blended learning taking into consideration learner characteristics/background, blended learning design elements and learning outcomes and how the former are significant predictors of blended learning effectiveness.

Studies like that of Morris and Lim ( 2009 ) have investigated learner and instructional factors influencing learning outcomes in blended learning. They however do not deal with such variables in the contexts of blended learning design as an aspect of innovative pedagogy involving the use of technology in education. Apart from the learner variables such as gender, age, experience, study time as tackled before, this study considers social and background aspects of the learners such as family and social support, self-regulation, attitudes towards blended learning and management of workload to find out their relationship to blended learning effectiveness. Identifying the various types of learner variables with regard to their relationship to blended learning effectiveness is important in this study as we embark on innovative pedagogy with technology in teaching and learning.

Literature review

This review presents research about blended learning effectiveness from the perspective of learner characteristics/background, design features and learning outcomes. It also gives the factors that are considered to be significant for blended learning effectiveness. The selected elements are as a result of the researcher’s experiences at a Ugandan university where student learning faces challenges with regard to learner characteristics and blended learning features in adopting the use of technology in teaching and learning. We have made use of Loukis, Georgiou, and Pazalo ( 2007 ) value flow model for evaluating an e-learning and blended learning service specifically considering the effectiveness evaluation layer. This evaluates the extent of an e-learning system usage and the educational effectiveness. In addition, studies by Leidner, Jarvenpaa, Dillon and Gunawardena as cited in Selim ( 2007 ) have noted three main factors that affect e-learning and blended learning effectiveness as instructor characteristics, technology and student characteristics. Heinich, Molenda, Russell, and Smaldino ( 2001 ) showed the need for examining learner characteristics for effective instructional technology use and showed that user characteristics do impact on behavioral intention to use technology. Research has dealt with learner characteristics that contribute to learner performance outcomes. They have dealt with emotional intelligence, resilience, personality type and success in an online learning context (Berenson, Boyles, & Weaver, 2008 ). Dealing with the characteristics identified in this study will give another dimension, especially for blended learning in learning environment designs and add to specific debate on learning using technology. Lin and Vassar, ( 2009 ) indicated that learner success is dependent on ability to cope with technical difficulty as well as technical skills in computer operations and internet navigation. This justifies our approach in dealing with the design features of blended learning in this study.

Learner characteristics/background and blended learning effectiveness

Studies indicate that student characteristics such as gender play significant roles in academic achievement (Oxford Group, 2013 ), but no study examines performance of male and female as an important factor in blended learning effectiveness. It has again been noted that the success of e- and blended learning is highly dependent on experience in internet and computer applications (Picciano & Seaman, 2007 ). Rigorous discovery of such competences can finally lead to a confirmation of high possibilities of establishing blended learning. Research agrees that the success of e-learning and blended learning can largely depend on students as well as teachers gaining confidence and capability to participate in blended learning (Hadad, 2007 ). Shraim and Khlaif ( 2010 ) note in their research that 75% of students and 72% of teachers were lacking in skills to utilize ICT based learning components due to insufficient skills and experience in computer and internet applications and this may lead to failure in e-learning and blended learning. It is therefore pertinent that since the use of blended learning applies high usage of computers, computer competence is necessary (Abubakar & Adetimirin, 2015 ) to avoid failure in applying technology in education for learning effectiveness. Rovai, ( 2003 ) noted that learners’ computer literacy and time management are crucial in distance learning contexts and concluded that such factors are meaningful in online classes. This is supported by Selim ( 2007 ) that learners need to posses time management skills and computer skills necessary for effectiveness in e- learning and blended learning. Self-regulatory skills of time management lead to better performance and learners’ ability to structure the physical learning environment leads to efficiency in e-learning and blended learning environments. Learners need to seek helpful assistance from peers and teachers through chats, email and face-to-face meetings for effectiveness (Lynch & Dembo, 2004 ). Factors such as learners’ hours of employment and family responsibilities are known to impede learners’ process of learning, blended learning inclusive (Cohen, Stage, Hammack, & Marcus, 2012 ). It was also noted that a common factor in failure and learner drop-out is the time conflict which is compounded by issues of family , employment status as well as management support (Packham, Jones, Miller, & Thomas, 2004 ). A study by Thompson ( 2004 ) shows that work, family, insufficient time and study load made learners withdraw from online courses.

Learner attitudes to blended learning can result in its effectiveness and these shape behavioral intentions which usually lead to persistence in a learning environment, blended inclusive. Selim, ( 2007 ) noted that the learners’ attitude towards e-learning and blended learning are success factors for these learning environments. Learner performance by age and gender in e-learning and blended learning has been found to indicate no significant differences between male and female learners and different age groups (i.e. young, middle-aged and old above 45 years) (Coldwell, Craig, Paterson, & Mustard, 2008 ). This implies that the potential for blended learning to be effective exists and is unhampered by gender or age differences.

Blended learning design features

The design features under study here include interactions, technology with its quality, face-to-face support and learning management system tools and resources.

Research shows that absence of learner interaction causes failure and eventual drop-out in online courses (Willging & Johnson, 2009 ) and the lack of learner connectedness was noted as an internal factor leading to learner drop-out in online courses (Zielinski, 2000 ). It was also noted that learners may not continue in e- and blended learning if they are unable to make friends thereby being disconnected and developing feelings of isolation during their blended learning experiences (Willging & Johnson, 2009). Learners’ Interactions with teachers and peers can make blended learning effective as its absence makes learners withdraw (Astleitner, 2000 ). Loukis, Georgious and Pazalo (2007) noted that learners’ measuring of a system’s quality, reliability and ease of use leads to learning efficiency and can be so in blended learning. Learner success in blended learning may substantially be affected by system functionality (Pituch & Lee, 2006 ) and may lead to failure of such learning initiatives (Shrain, 2012 ). It is therefore important to examine technology quality for ensuring learning effectiveness in blended learning. Tselios, Daskalakis, and Papadopoulou ( 2011 ) investigated learner perceptions after a learning management system use and found out that the actual system use determines the usefulness among users. It is again noted that a system with poor response time cannot be taken to be useful for e-learning and blended learning especially in cases of limited bandwidth (Anderson, 2004 ). In this study, we investigate the use of Moodle and its tools as a function of potential effectiveness of blended learning.

The quality of learning management system content for learners can be a predictor of good performance in e-and blended learning environments and can lead to learner satisfaction. On the whole, poor quality technology yields no satisfaction by users and therefore the quality of technology significantly affects satisfaction (Piccoli, Ahmad, & Ives, 2001 ). Continued navigation through a learning management system increases use and is an indicator of success in blended learning (Delone & McLean, 2003 ). The efficient use of learning management system and its tools improves learning outcomes in e-learning and blended learning environments.

It is noted that learner satisfaction with a learning management system can be an antecedent factor for blended learning effectiveness. Goyal and Tambe ( 2015 ) noted that learners showed an appreciation to Moodle’s contribution in their learning. They showed positivity with it as it improved their understanding of course material (Ahmad & Al-Khanjari, 2011 ). The study by Goyal and Tambe ( 2015 ) used descriptive statistics to indicate improved learning by use of uploaded syllabus and session plans on Moodle. Improved learning is also noted through sharing study material, submitting assignments and using the calendar. Learners in the study found Moodle to be an effective educational tool.

In blended learning set ups, face-to-face experiences form part of the blend and learner positive attitudes to such sessions could mean blended learning effectiveness. A study by Marriot, Marriot, and Selwyn ( 2004 ) showed learners expressing their preference for face-to-face due to its facilitation of social interaction and communication skills acquired from classroom environment. Their preference for the online session was only in as far as it complemented the traditional face-to-face learning. Learners in a study by Osgerby ( 2013 ) had positive perceptions of blended learning but preferred face-to-face with its step-by-stem instruction. Beard, Harper and Riley ( 2004 ) shows that some learners are successful while in a personal interaction with teachers and peers thus prefer face-to-face in the blend. Beard however dealt with a comparison between online and on-campus learning while our study combines both, singling out the face-to-face part of the blend. The advantage found by Beard is all the same relevant here because learners in blended learning express attitude to both online and face-to-face for an effective blend. Researchers indicate that teacher presence in face-to-face sessions lessens psychological distance between them and the learners and leads to greater learning. This is because there are verbal aspects like giving praise, soliciting for viewpoints, humor, etc and non-verbal expressions like eye contact, facial expressions, gestures, etc which make teachers to be closer to learners psychologically (Kelley & Gorham, 2009 ).

Learner outcomes

The outcomes under scrutiny in this study include performance, motivation, satisfaction and knowledge construction. Motivation is seen here as an outcome because, much as cognitive factors such as course grades are used in measuring learning outcomes, affective factors like intrinsic motivation may also be used to indicate outcomes of learning (Kuo, Walker, Belland, & Schroder, 2013 ). Research shows that high motivation among online learners leads to persistence in their courses (Menager-Beeley, 2004 ). Sankaran and Bui ( 2001 ) indicated that less motivated learners performed poorly in knowledge tests while those with high learning motivation demonstrate high performance in academics (Green, Nelson, Martin, & Marsh, 2006 ). Lim and Kim, ( 2003 ) indicated that learner interest as a motivation factor promotes learner involvement in learning and this could lead to learning effectiveness in blended learning.

Learner satisfaction was noted as a strong factor for effectiveness of blended and online courses (Wilging & Johnson, 2009) and dissatisfaction may result from learners’ incompetence in the use of the learning management system as an effective learning tool since, as Islam ( 2014 ) puts it, users may be dissatisfied with an information system due to ease of use. A lack of prompt feedback for learners from course instructors was found to cause dissatisfaction in an online graduate course. In addition, dissatisfaction resulted from technical difficulties as well as ambiguous course instruction Hara and Kling ( 2001 ). These factors, once addressed, can lead to learner satisfaction in e-learning and blended learning and eventual effectiveness. A study by Blocker and Tucker ( 2001 ) also showed that learners had difficulties with technology and inadequate group participation by peers leading to dissatisfaction within these design features. Student-teacher interactions are known to bring satisfaction within online courses. Study results by Swan ( 2001 ) indicated that student-teacher interaction strongly related with student satisfaction and high learner-learner interaction resulted in higher levels of course satisfaction. Descriptive results by Naaj, Nachouki, and Ankit ( 2012 ) showed that learners were satisfied with technology which was a video-conferencing component of blended learning with a mean of 3.7. The same study indicated student satisfaction with instructors at a mean of 3.8. Askar and Altun, ( 2008 ) found that learners were satisfied with face-to-face sessions of the blend with t-tests and ANOVA results indicating female scores as higher than for males in the satisfaction with face-to-face environment of the blended learning.

Studies comparing blended learning with traditional face-to-face have indicated that learners perform equally well in blended learning and their performance is unaffected by the delivery method (Kwak, Menezes, & Sherwood, 2013 ). In another study, learning experience and performance are known to improve when traditional course delivery is integrated with online learning (Stacey & Gerbic, 2007 ). Such improvement as noted may be an indicator of blended learning effectiveness. Our study however, delves into improved performance but seeks to establish the potential of blended learning effectiveness by considering grades obtained in a blended learning experiment. Score 50 and above is considered a pass in this study’s setting and learners scoring this and above will be considered to have passed. This will make our conclusions about the potential of blended learning effectiveness.

Regarding knowledge construction, it has been noted that effective learning occurs where learners are actively involved (Nurmela, Palonen, Lehtinen & Hakkarainen, 2003 , cited in Zhu, 2012 ) and this may be an indicator of learning environment effectiveness. Effective blended learning would require that learners are able to initiate, discover and accomplish the processes of knowledge construction as antecedents of blended learning effectiveness. A study by Rahman, Yasin and Jusoff ( 2011 ) indicated that learners were able to use some steps to construct meaning through an online discussion process through assignments given. In the process of giving and receiving among themselves, the authors noted that learners learned by writing what they understood. From our perspective, this can be considered to be accomplishment in the knowledge construction process. Their study further shows that learners construct meaning individually from assignments and this stage is referred to as pre-construction which for our study, is an aspect of discovery in the knowledge construction process.

Predictors of blended learning effectiveness

Researchers have dealt with success factors for online learning or those for traditional face-to-face learning but little is known about factors that predict blended learning effectiveness in view of learner characteristics and blended learning design features. This part of our study seeks to establish the learner characteristics/backgrounds and design features that predict blended learning effectiveness with regard to satisfaction, outcomes, motivation and knowledge construction. Song, Singleton, Hill, and Koh ( 2004 ) examined online learning effectiveness factors and found out that time management (a self-regulatory factor) was crucial for successful online learning. Eom, Wen, and Ashill ( 2006 ) using a survey found out that interaction, among other factors, was significant for learner satisfaction. Technical problems with regard to instructional design were a challenge to online learners thus not indicating effectiveness (Song et al., 2004 ), though the authors also indicated that descriptive statistics to a tune of 75% and time management (62%) impact on success of online learning. Arbaugh ( 2000 ) and Swan ( 2001 ) indicated that high levels of learner-instructor interaction are associated with high levels of user satisfaction and learning outcomes. A study by Naaj et al. ( 2012 ) indicated that technology and learner interactions, among other factors, influenced learner satisfaction in blended learning.

Objective and research questions of the current study

The objective of the current study is to investigate the effectiveness of blended learning in view of student satisfaction, knowledge construction, performance and intrinsic motivation and how they are related to student characteristics and blended learning design features in a blended learning environment.

Research questions

What are the student characteristics and blended learning design features for an effective blended learning environment?

Which factors (among the learner characteristics and blended learning design features) predict student satisfaction, learning outcomes, intrinsic motivation and knowledge construction?

Conceptual model of the present study

The reviewed literature clearly shows learner characteristics/background and blended learning design features play a part in blended learning effectiveness and some of them are significant predictors of effectiveness. The conceptual model for our study is depicted as follows (Fig.  1 ):

Conceptual model of the current study

Research design

This research applies a quantitative design where descriptive statistics are used for the student characteristics and design features data, t-tests for the age and gender variables to determine if they are significant in blended learning effectiveness and regression for predictors of blended learning effectiveness.

This study is based on an experiment in which learners participated during their study using face-to-face sessions and an on-line session of a blended learning design. A learning management system (Moodle) was used and learner characteristics/background and blended learning design features were measured in relation to learning effectiveness. It is therefore a planning evaluation research design as noted by Guskey ( 2000 ) since the outcomes are aimed at blended learning implementation at MMU. The plan under which the various variables were tested involved face-to-face study at the beginning of a 17 week semester which was followed by online teaching and learning in the second half of the semester. The last part of the semester was for another face-to-face to review work done during the online sessions and final semester examinations. A questionnaire with items on student characteristics, design features and learning outcomes was distributed among students from three schools and one directorate of postgraduate studies.

Participants

Cluster sampling was used to select a total of 238 learners to participate in this study. Out of the whole university population of students, three schools and one directorate were used. From these, one course unit was selected from each school and all the learners following the course unit were surveyed. In the school of Education ( n  = 70) and Business and Management Studies ( n  = 133), sophomore students were involved due to the fact that they have been introduced to ICT basics during their first year of study. Students of the third year were used from the department of technology in the School of Applied Sciences and Technology ( n  = 18) since most of the year two courses had a lot of practical aspects that could not be used for the online learning part. From the Postgraduate Directorate ( n  = 17), first and second year students were selected because learners attend a face-to-face session before they are given paper modules to study away from campus.

The study population comprised of 139 male students representing 58.4% and 99 females representing 41.6% with an average age of 24 years.

Instruments

The end of semester results were used to measure learner performance. The online self-regulated learning questionnaire (Barnard, Lan, To, Paton, & Lai, 2009 ) and the intrinsic motivation inventory (Deci & Ryan, 1982 ) were applied to measure the constructs on self regulation in the student characteristics and motivation in the learning outcome constructs. Other self-developed instruments were used for the other remaining variables of attitudes, computer competence, workload management, social and family support, satisfaction, knowledge construction, technology quality, interactions, learning management system tools and resources and face-to-face support.

Instrument reliability

Cronbach’s alpha was used to test reliability and the table below gives the results. All the scales and sub-scales had acceptable internal consistency reliabilities as shown in Table  1 below:

Data analysis

First, descriptive statistics was conducted. Shapiro-Wilk test was done to test normality of the data for it to qualify for parametric tests. The test results for normality of our data before the t- test resulted into significant levels (Male = .003, female = .000) thereby violating the normality assumption. We therefore used the skewness and curtosis results which were between −1.0 and +1.0 and assumed distribution to be sufficiently normal to qualify the data for a parametric test, (Pallant, 2010 ). An independent samples t -test was done to find out the differences in male and female performance to explain the gender characteristics in blended learning effectiveness. A one-way ANOVA between subjects was conducted to establish the differences in performance between age groups. Finally, multiple regression analysis was done between student variables and design elements with learning outcomes to determine the significant predictors for blended learning effectiveness.

Student characteristics, blended learning design features and learning outcomes ( RQ1 )

A t- test was carried out to establish the performance of male and female learners in the blended learning set up. This was aimed at finding out if male and female learners do perform equally well in blended learning given their different roles and responsibilities in society. It was found that male learners performed slightly better ( M  = 62.5) than their female counterparts ( M  = 61.1). An independent t -test revealed that the difference between the performances was not statistically significant ( t  = 1.569, df = 228, p  = 0.05, one tailed). The magnitude of the differences in the means is small with effect size ( d  = 0.18). A one way between subjects ANOVA was conducted on the performance of different age groups to establish the performance of learners of young and middle aged age groups (20–30, young & and 31–39, middle aged). This revealed a significant difference in performance (F(1,236 = 8.498, p < . 001).

Average percentages of the items making up the self regulated learning scale are used to report the findings about all the sub-scales in the learner characteristics/background scale. Results show that learner self-regulation was good enough at 72.3% in all the sub-scales of goal setting, environment structuring, task strategies, time management, help-seeking and self-evaluation among learners. The least in the scoring was task strategies at 67.7% and the highest was learner environment structuring at 76.3%. Learner attitude towards blended learning environment is at 76% in the sub-scales of learner autonomy, quality of instructional materials, course structure, course interface and interactions. The least scored here is attitude to course structure at 66% and their attitudes were high on learner autonomy and course interface both at 82%. Results on the learners’ computer competences are summarized in percentages in the table below (Table  2 ):

It can be seen that learners are skilled in word processing at 91%, email at 63.5%, spreadsheets at 68%, web browsers at 70.2% and html tools at 45.4%. They are therefore good enough in word processing and web browsing. Their computer confidence levels are reported at 75.3% and specifically feel very confident when it comes to working with a computer (85.7%). Levels of family and social support for learners during blended learning experiences are at 60.5 and 75% respectively. There is however a low score on learners being assisted by family members in situations of computer setbacks (33.2%) as 53.4% of the learners reported no assistance in this regard. A higher percentage (85.3%) is reported on learners getting support from family regarding provision of essentials for learning such as tuition. A big percentage of learners spend two hours on study while at home (35.3%) followed by one hour (28.2%) while only 9.7% spend more than three hours on study at home. Peers showed great care during the blended learning experience (81%) and their experiences were appreciated by the society (66%). Workload management by learners vis-à-vis studying is good at 60%. Learners reported that their workmates stand in for them at workplaces to enable them do their study in blended learning while 61% are encouraged by their bosses to go and improve their skills through further education and training. On the time spent on other activities not related to study, majority of the learners spend three hours (35%) while 19% spend 6 hours. Sixty percent of the learners have to answer to someone when they are not attending to other activities outside study compared to the 39.9% who do not and can therefore do study or those other activities.

The usability of the online system, tools and resources was below average as shown in the table below in percentages (Table  3 ):

However, learners became skilled at navigating around the learning management system (79%) and it was easy for them to locate course content, tools and resources needed such as course works, news, discussions and journal materials. They effectively used the communication tools (60%) and to work with peers by making posts (57%). They reported that online resources were well organized, user friendly and easy to access (71%) as well as well structured in a clear and understandable manner (72%). They therefore recommended the use of online resources for other course units in future (78%) because they were satisfied with them (64.3%). On the whole, the online resources were fine for the learners (67.2%) and useful as a learning resource (80%). The learners’ perceived usefulness/satisfaction with online system, tools, and resources was at 81% as the LMS tools helped them to communicate, work with peers and reflect on their learning (74%). They reported that using moodle helped them to learn new concepts, information and gaining skills (85.3%) as well as sharing what they knew or learned (76.4%). They enjoyed the course units (78%) and improved their skills with technology (89%).

Learner interactions were seen from three angles of cognitivism, collaborative learning and student-teacher interactions. Collaborative learning was average at 50% with low percentages in learners posting challenges to colleagues’ ideas online (34%) and posting ideas for colleagues to read online (37%). They however met oftentimes online (60%) and organized how they would work together in study during the face-to-face meetings (69%). The common form of communication medium frequently used by learners during the blended learning experience was by phone (34.5%) followed by whatsapp (21.8%), face book (21%), discussion board (11.8%) and email (10.9%). At the cognitive level, learners interacted with content at 72% by reading the posted content (81%), exchanging knowledge via the LMS (58.4%), participating in discussions on the forum (62%) and got course objectives and structure introduced during the face-to-face sessions (86%). Student-teacher interaction was reported at 71% through instructors individually working with them online (57.2%) and being well guided towards learning goals (81%). They did receive suggestions from instructors about resources to use in their learning (75.3%) and instructors provided learning input for them to come up with their own answers (71%).

The technology quality during the blended learning intervention was rated at 69% with availability of 72%, quality of the resources was at 68% with learners reporting that discussion boards gave right content necessary for study (71%) and the email exchanges containing relevant and much needed information (63.4%) as well as chats comprising of essential information to aid the learning (69%). Internet reliability was rated at 66% with a speed considered averagely good to facilitate online activities (63%). They however reported that there was intermittent breakdown during online study (67%) though they could complete their internet program during connection (63.4%). Learners eventually found it easy to download necessary materials for study in their blended learning experiences (71%).

Learner extent of use of the learning management system features was as shown in the table below in percentage (Table  4 ):

From the table, very rarely used features include the blog and wiki while very often used ones include the email, forum, chat and calendar.

The effectiveness of the LMS was rated at 79% by learners reporting that they found it useful (89%) and using it makes their learning activities much easier (75.2%). Moodle has helped learners to accomplish their learning tasks more quickly (74%) and that as a LMS, it is effective in teaching and learning (88%) with overall satisfaction levels at 68%. However, learners note challenges in the use of the LMS regarding its performance as having been problematic to them (57%) and only 8% of the learners reported navigation while 16% reported access as challenges.

Learner attitudes towards Face-to-face support were reported at 88% showing that the sessions were enjoyable experiences (89%) with high quality class discussions (86%) and therefore recommended that the sessions should continue in blended learning (89%). The frequency of the face-to-face sessions is shown in the table below as preferred by learners (Table  5 ).

Learners preferred face-to-face sessions after every month in the semester (33.6%) and at the beginning of the blended learning session only (27.7%).

Learners reported high intrinsic motivation levels with interest and enjoyment of tasks at 83.7%, perceived competence at 70.2%, effort/importance sub-scale at 80%, pressure/tension reported at 54%. The pressure percentage of 54% arises from learners feeling nervous (39.2%) and a lot of anxiety (53%) while 44% felt a lot of pressure during the blended learning experiences. Learners however reported the value/usefulness of blended learning at 91% with majority believing that studying online and face-to-face had value for them (93.3%) and were therefore willing to take part in blended learning (91.2%). They showed that it is beneficial for them (94%) and that it was an important way of studying (84.3%).

Learner satisfaction was reported at 81% especially with instructors (85%) high percentage reported on encouraging learner participation during the course of study 93%, course content (83%) with the highest being satisfaction with the good relationship between the objectives of the course units and the content (90%), technology (71%) with a high percentage on the fact that the platform was adequate for the online part of the learning (76%), interactions (75%) with participation in class at 79%, and face-to-face sessions (91%) with learner satisfaction high on face-to-face sessions being good enough for interaction and giving an overview of the courses when objectives were introduced at 92%.

Learners’ knowledge construction was reported at 78% with initiation and discovery scales scoring 84% with 88% specifically for discovering the learning points in the course units. The accomplishment scale in knowledge construction scored 71% and specifically the fact that learners were able to work together with group members to accomplish learning tasks throughout the study of the course units (79%). Learners developed reports from activities (67%), submitted solutions to discussion questions (68%) and did critique peer arguments (69%). Generally, learners performed well in blended learning in the final examination with an average pass of 62% and standard deviation of 7.5.

Significant predictors of blended learning effectiveness ( RQ 2)

A standard multiple regression analysis was done taking learner characteristics/background and design features as predictor variables and learning outcomes as criterion variables. The data was first tested to check if it met the linear regression test assumptions and results showed the correlations between the independent variables and each of the dependent variables (highest 0.62 and lowest 0.22) as not being too high, which indicated that multicollinearity was not a problem in our model. From the coefficients table, the VIF values ranged from 1.0 to 2.4, well below the cut off value of 10 and indicating no possibility of multicollinearity. The normal probability plot was seen to lie as a reasonably straight diagonal from bottom left to top right indicating normality of our data. Linearity was found suitable from the scatter plot of the standardized residuals and was rectangular in distribution. Outliers were no cause for concern in our data since we had only 1% of all cases falling outside 3.0 thus proving the data as a normally distributed sample. Our R -square values was at 0.525 meaning that the independent variables explained about 53% of the variance in overall satisfaction, motivation and knowledge construction of the learners. All the models explaining the three dependent variables of learner satisfaction, intrinsic motivation and knowledge construction were significant at the 0.000 probability level (Table  6 ).

From the table above, design features (technology quality and online tools and resources), and learner characteristics (attitudes to blended learning, self-regulation) were significant predictors of learner satisfaction in blended learning. This means that good technology with the features involved and the learner positive attitudes with capacity to do blended learning with self drive led to their satisfaction. The design features (technology quality, interactions) and learner characteristics (self regulation and social support), were found to be significant predictors of learner knowledge construction. This implies that learners’ capacity to go on their work by themselves supported by peers and high levels of interaction using the quality technology led them to construct their own ideas in blended learning. Design features (technology quality, online tools and resources as well as learner interactions) and learner characteristics (self regulation), significantly predicted the learners’ intrinsic motivation in blended learning suggesting that good technology, tools and high interaction levels with independence in learning led to learners being highly motivated. Finally, none of the independent variables considered under this study were predictors of learning outcomes (grade).

In this study we have investigated learning outcomes as dependent variables to establish if particular learner characteristics/backgrounds and design features are related to the outcomes for blended learning effectiveness and if they predict learning outcomes in blended learning. We took students from three schools out of five and one directorate of post-graduate studies at a Ugandan University. The study suggests that the characteristics and design features examined are good drivers towards an effective blended learning environment though a few of them predicted learning outcomes in blended learning.

Student characteristics/background, blended learning design features and learning outcomes

The learner characteristics, design features investigated are potentially important for an effective blended learning environment. Performance by gender shows a balance with no statistical differences between male and female. There are statistically significant differences ( p  < .005) in the performance between age groups with means of 62% for age group 20–30 and 67% for age group 31 –39. The indicators of self regulation exist as well as positive attitudes towards blended learning. Learners do well with word processing, e-mail, spreadsheets and web browsers but still lag below average in html tools. They show computer confidence at 75.3%; which gives prospects for an effective blended learning environment in regard to their computer competence and confidence. The levels of family and social support for learners stand at 61 and 75% respectively, indicating potential for blended learning to be effective. The learners’ balance between study and work is a drive factor towards blended learning effectiveness since their management of their workload vis a vis study time is at 60 and 61% of the learners are encouraged to go for study by their bosses. Learner satisfaction with the online system and its tools shows prospect for blended learning effectiveness but there are challenges in regard to locating course content and assignments, submitting their work and staying on a task during online study. Average collaborative, cognitive learning as well as learner-teacher interactions exist as important factors. Technology quality for effective blended learning is a potential for effectiveness though features like the blog and wiki are rarely used by learners. Face-to-face support is satisfactory and it should be conducted every month. There is high intrinsic motivation, satisfaction and knowledge construction as well as good performance in examinations ( M  = 62%, SD = 7.5); which indicates potentiality for blended learning effectiveness.

Significant predictors of blended learning effectiveness

Among the design features, technology quality, online tools and face-to-face support are predictors of learner satisfaction while learner characteristics of self regulation and attitudes to blended learning are predictors of satisfaction. Technology quality and interactions are the only design features predicting learner knowledge construction, while social support, among the learner backgrounds, is a predictor of knowledge construction. Self regulation as a learner characteristic is a predictor of knowledge construction. Self regulation is the only learner characteristic predicting intrinsic motivation in blended learning while technology quality, online tools and interactions are the design features predicting intrinsic motivation. However, all the independent variables are not significant predictors of learning performance in blended learning.

The high computer competences and confidence is an antecedent factor for blended learning effectiveness as noted by Hadad ( 2007 ) and this study finds learners confident and competent enough for the effectiveness of blended learning. A lack in computer skills causes failure in e-learning and blended learning as noted by Shraim and Khlaif ( 2010 ). From our study findings, this is no threat for blended learning our case as noted by our results. Contrary to Cohen et al. ( 2012 ) findings that learners’ family responsibilities and hours of employment can impede their process of learning, it is not the case here since they are drivers to the blended learning process. Time conflict, as compounded by family, employment status and management support (Packham et al., 2004 ) were noted as causes of learner failure and drop out of online courses. Our results show, on the contrary, that these factors are drivers for blended learning effectiveness because learners have a good balance between work and study and are supported by bosses to study. In agreement with Selim ( 2007 ), learner positive attitudes towards e-and blended learning environments are success factors. In line with Coldwell et al. ( 2008 ), no statistically significant differences exist between age groups. We however note that Coldwel, et al dealt with young, middle-aged and old above 45 years whereas we dealt with young and middle aged only.

Learner interactions at all levels are good enough and contrary to Astleitner, ( 2000 ) that their absence makes learners withdraw, they are a drive factor here. In line with Loukis (2007) the LMS quality, reliability and ease of use lead to learning efficiency as technology quality, online tools are predictors of learner satisfaction and intrinsic motivation. Face-to-face sessions should continue on a monthly basis as noted here and is in agreement with Marriot et al. ( 2004 ) who noted learner preference for it for facilitating social interaction and communication skills. High learner intrinsic motivation leads to persistence in online courses as noted by Menager-Beeley, ( 2004 ) and is high enough in our study. This implies a possibility of an effectiveness blended learning environment. The causes of learner dissatisfaction noted by Islam ( 2014 ) such as incompetence in the use of the LMS are contrary to our results in our study, while the one noted by Hara and Kling, ( 2001 ) as resulting from technical difficulties and ambiguous course instruction are no threat from our findings. Student-teacher interaction showed a relation with satisfaction according to Swan ( 2001 ) but is not a predictor in our study. Initiating knowledge construction by learners for blended learning effectiveness is exhibited in our findings and agrees with Rahman, Yasin and Jusof ( 2011 ). Our study has not agreed with Eom et al. ( 2006 ) who found learner interactions as predictors of learner satisfaction but agrees with Naaj et al. ( 2012 ) regarding technology as a predictor of learner satisfaction.

Conclusion and recommendations

An effective blended learning environment is necessary in undertaking innovative pedagogical approaches through the use of technology in teaching and learning. An examination of learner characteristics/background, design features and learning outcomes as factors for effectiveness can help to inform the design of effective learning environments that involve face-to-face sessions and online aspects. Most of the student characteristics and blended learning design features dealt with in this study are important factors for blended learning effectiveness. None of the independent variables were identified as significant predictors of student performance. These gaps are open for further investigation in order to understand if they can be significant predictors of blended learning effectiveness in a similar or different learning setting.

In planning to design and implement blended learning, we are mindful of the implications raised by this study which is a planning evaluation research for the design and eventual implementation of blended learning. Universities should be mindful of the interplay between the learner characteristics, design features and learning outcomes which are indicators of blended learning effectiveness. From this research, learners manifest high potential to take on blended learning more especially in regard to learner self-regulation exhibited. Blended learning is meant to increase learners’ levels of knowledge construction in order to create analytical skills in them. Learner ability to assess and critically evaluate knowledge sources is hereby established in our findings. This can go a long way in producing skilled learners who can be innovative graduates enough to satisfy employment demands through creativity and innovativeness. Technology being less of a shock to students gives potential for blended learning design. Universities and other institutions of learning should continue to emphasize blended learning approaches through installation of learning management systems along with strong internet to enable effective learning through technology especially in the developing world.

Abubakar, D. & Adetimirin. (2015). Influence of computer literacy on post-graduates’ use of e-resources in Nigerian University Libraries. Library Philosophy and Practice. From http://digitalcommons.unl.edu/libphilprac/ . Retrieved 18 Aug 2015.

Ahmad, N., & Al-Khanjari, Z. (2011). Effect of Moodle on learning: An Oman perception. International Journal of Digital Information and Wireless Communications (IJDIWC), 1 (4), 746–752.

Google Scholar  

Anderson, T. (2004). Theory and Practice of Online Learning . Canada: AU Press, Athabasca University.

Arbaugh, J. B. (2000). How classroom environment and student engagement affect learning in internet-basedMBAcourses. Business Communication Quarterly, 63 (4), 9–18.

Article   Google Scholar  

Askar, P. & Altun, A. (2008). Learner satisfaction on blended learning. E-Leader Krakow , 2008.

Astleitner, H. (2000) Dropout and distance education. A review of motivational and emotional strategies to reduce dropout in web-based distance education. In Neuwe Medien in Unterricht, Aus-und Weiterbildung Waxmann Munster, New York.

Barnard, L., Lan, W. Y., To, Y. M., Paton, V. O., & Lai, S. (2009). Measuring self regulation in online and blended learning environments’. Internet and Higher Education, 12 (1), 1–6.

Beard, L. A., Harper, C., & Riley, G. (2004). Online versus on-campus instruction: student attitudes & perceptions. TechTrends, 48 (6), 29–31.

Berenson, R., Boyles, G., & Weaver, A. (2008). Emotional intelligence as a predictor for success in online learning. International Review of Research in open & Distance Learning, 9 (2), 1–16.

Blocker, J. M., & Tucker, G. (2001). Using constructivist principles in designing and integrating online collaborative interactions. In F. Fuller & R. McBride (Eds.), Distance education. Proceedings of the Society for Information Technology & Teacher Education International Conference (pp. 32–36). ERIC Document Reproduction Service No. ED 457 822.

Cohen, K. E., Stage, F. K., Hammack, F. M., & Marcus, A. (2012). Persistence of master’s students in the United States: Developing and testing of a conceptual model . USA: PhD Dissertation, New York University.

Coldwell, J., Craig, A., Paterson, T., & Mustard, J. (2008). Online students: Relationships between participation, demographics and academic performance. The Electronic Journal of e-learning, 6 (1), 19–30.

Deci, E. L., & Ryan, R. M. (1982). Intrinsic Motivation Inventory. Available from selfdeterminationtheory.org/intrinsic-motivation-inventory/ . Accessed 2 Aug 2016.

Delone, W. H., & McLean, E. R. (2003). The Delone and McLean model of information systems success: A Ten-year update. Journal of Management Information Systems, 19 (4), 9–30.

Demirkol, M., & Kazu, I. Y. (2014). Effect of blended environment model on high school students’ academic achievement. The Turkish Online Journal of Educational Technology, 13 (1), 78–87.

Eom, S., Wen, H., & Ashill, N. (2006). The determinants of students’ perceived learning outcomes and satisfaction in university online education: an empirical investigation’. Decision Sciences Journal of Innovative Education, 4 (2), 215–235.

Garrison, D. R., & Kanuka, H. (2004). Blended learning: Uncovering its transformative potential in higher education. Internet and Higher Education, 7 (2), 95–105.

Goyal, E., & Tambe, S. (2015). Effectiveness of Moodle-enabled blended learning in private Indian Business School teaching NICHE programs. The Online Journal of New Horizons in Education, 5 (2), 14–22.

Green, J., Nelson, G., Martin, A. J., & Marsh, H. (2006). The causal ordering of self-concept and academic motivation and its effect on academic achievement. International Education Journal, 7 (4), 534–546.

Guskey, T. R. (2000). Evaluating Professional Development . Thousands Oaks: Corwin Press.

Hadad, W. (2007). ICT-in-education toolkit reference handbook . InfoDev. from http://www.infodev.org/en/Publication.301.html . Retrieved 04 Aug 2015.

Hara, N. & Kling, R. (2001). Student distress in web-based distance education. Educause Quarterly. 3 (2001).

Heinich, R., Molenda, M., Russell, J. D., & Smaldino, S. E. (2001). Instructional Media and Technologies for Learning (7th ed.). Englewood Cliffs: Prentice-Hall.

Hofmann, J. (2014). Solutions to the top 10 challenges of blended learning. Top 10 challenges of blended learning. Available on cedma-europe.org .

Islam, A. K. M. N. (2014). Sources of satisfaction and dissatisfaction with a learning management system in post-adoption stage: A critical incident technique approach. Computers in Human Behaviour, 30 , 249–261.

Kelley, D. H. & Gorham, J. (2009) Effects of immediacy on recall of information. Communication Education, 37 (3), 198–207.

Kenney, J., & Newcombe, E. (2011). Adopting a blended learning approach: Challenges, encountered and lessons learned in an action research study. Journal of Asynchronous Learning Networks, 15 (1), 45–57.

Kintu, M. J., & Zhu, C. (2016). Student characteristics and learning outcomes in a blended learning environment intervention in a Ugandan University. Electronic Journal of e-Learning, 14 (3), 181–195.

Kuo, Y., Walker, A. E., Belland, B. R., & Schroder, L. E. E. (2013). A predictive study of student satisfaction in online education programs. International Review of Research in Open and Distributed Learning, 14 (1), 16–39.

Kwak, D. W., Menezes, F. M., & Sherwood, C. (2013). Assessing the impact of blended learning on student performance. Educational Technology & Society, 15 (1), 127–136.

Lim, D. H., & Kim, H. J. (2003). Motivation and learner characteristics affecting online learning and learning application. Journal of Educational Technology Systems, 31 (4), 423–439.

Lim, D. H., & Morris, M. L. (2009). Learner and instructional factors influencing learner outcomes within a blended learning environment. Educational Technology & Society, 12 (4), 282–293.

Lin, B., & Vassar, J. A. (2009). Determinants for success in online learning communities. International Journal of Web-based Communities, 5 (3), 340–350.

Loukis, E., Georgiou, S. & Pazalo, K. (2007). A value flow model for the evaluation of an e-learning service. ECIS, 2007 Proceedings, paper 175.

Lynch, R., & Dembo, M. (2004). The relationship between self regulation and online learning in a blended learning context. The International Review of Research in Open and Distributed Learning, 5 (2), 1–16.

Marriot, N., Marriot, P., & Selwyn. (2004). Accounting undergraduates’ changing use of ICT and their views on using the internet in higher education-A Research note. Accounting Education, 13 (4), 117–130.

Menager-Beeley, R. (2004). Web-based distance learning in a community college: The influence of task values on task choice, retention and commitment. (Doctoral dissertation, University of Southern California). Dissertation Abstracts International, 64 (9-A), 3191.

Naaj, M. A., Nachouki, M., & Ankit, A. (2012). Evaluating student satisfaction with blended learning in a gender-segregated environment. Journal of Information Technology Education: Research, 11 , 185–200.

Nurmela, K., Palonen, T., Lehtinen, E. & Hakkarainen, K. (2003). Developing tools for analysing CSCL process. In Wasson, B. Ludvigsen, S. & Hoppe, V. (eds), Designing for change in networked learning environments (pp 333–342). Dordrecht, The Netherlands, Kluwer.

Osgerby, J. (2013). Students’ perceptions of the introduction of a blended learning environment: An exploratory case study. Accounting Education, 22 (1), 85–99.

Oxford Group, (2013). Blended learning-current use, challenges and best practices. From http://www.kineo.com/m/0/blended-learning-report-202013.pdf . Accessed on 17 Mar 2016.

Packham, G., Jones, P., Miller, C., & Thomas, B. (2004). E-learning and retention key factors influencing student withdrawal. Education and Training, 46 (6–7), 335–342.

Pallant, J. (2010). SPSS Survival Mannual (4th ed.). Maidenhead: OUP McGraw-Hill.

Park, J.-H., & Choi, H. J. (2009). Factors influencing adult learners’ decision to drop out or persist in online learning. Educational Technology & Society, 12 (4), 207–217.

Picciano, A., & Seaman, J. (2007). K-12 online learning: A survey of U.S. school district administrators . New York, USA: Sloan-C.

Piccoli, G., Ahmad, R., & Ives, B. (2001). Web-based virtual learning environments: a research framework and a preliminary assessment of effectiveness in basic IT skill training. MIS Quarterly, 25 (4), 401–426.

Pituch, K. A., & Lee, Y. K. (2006). The influence of system characteristics on e-learning use. Computers & Education, 47 (2), 222–244.

Rahman, S. et al, (2011). Knowledge construction process in online learning. Middle East Journal of Scientific Research, 8 (2), 488–492.

Rovai, A. P. (2003). In search of higher persistence rates in distance education online programs. Computers & Education, 6 (1), 1–16.

Sankaran, S., & Bui, T. (2001). Impact of learning strategies and motivation on performance: A study in Web-based instruction. Journal of Instructional Psychology, 28 (3), 191–198.

Selim, H. M. (2007). Critical success factors for e-learning acceptance: Confirmatory factor models. Computers & Education, 49 (2), 396–413.

Shraim, K., & Khlaif, Z. N. (2010). An e-learning approach to secondary education in Palestine: opportunities and challenges. Information Technology for Development, 16 (3), 159–173.

Shrain, K. (2012). Moving towards e-learning paradigm: Readiness of higher education instructors in Palestine. International Journal on E-Learning, 11 (4), 441–463.

Song, L., Singleton, E. S., Hill, J. R., & Koh, M. H. (2004). Improving online learning: student perceptions of useful and challenging characteristics’. Internet and Higher Education, 7 (1), 59–70.

Stacey, E., & Gerbic, P. (2007). Teaching for blended learning: research perspectives from on-campus and distance students. Education and Information Technologies, 12 , 165–174.

Swan, K. (2001). Virtual interactivity: design factors affecting student satisfaction and perceived learning in asynchronous online courses. Distance Education, 22 (2), 306–331.

Article   MathSciNet   Google Scholar  

Thompson, E. (2004). Distance education drop-out: What can we do? In R. Pospisil & L. Willcoxson (Eds.), Learning Through Teaching (Proceedings of the 6th Annual Teaching Learning Forum, pp. 324–332). Perth, Australia: Murdoch University.

Tselios, N., Daskalakis, S., & Papadopoulou, M. (2011). Assessing the acceptance of a blended learning university course. Educational Technology & Society, 14 (2), 224–235.

Willging, P. A., & Johnson, S. D. (2009). Factors that influence students’ decision to drop-out of online courses. Journal of Asynchronous Learning Networks, 13 (3), 115–127.

Zhu, C. (2012). Student satisfaction, performance and knowledge construction in online collaborative learning. Educational Technology & Society, 15 (1), 127–137.

Zielinski, D. (2000). Can you keep learners online? Training, 37 (3), 64–75.

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Kintu, M.J., Zhu, C. & Kagambe, E. Blended learning effectiveness: the relationship between student characteristics, design features and outcomes. Int J Educ Technol High Educ 14 , 7 (2017). https://doi.org/10.1186/s41239-017-0043-4

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This chapter starts from the observation that there is a limited presence of quantitative research published in leading adult education journals such as Adult Education Quarterly , Studies in Continuing Education and International Journal of Lifelong Learning . This observation was also discussed by Fejes and Nylander (2015, see also Chap. 7 ). As an adult education scholar mainly working with large quantitative datasets, I aim to provide more insight on what quantitative methods have to offer to the field. I will do this through a brief discussion of the role of methodologies and methods in empirical research, but also by engaging with examples of quantitative research available in the scholarly literature, including a range of existing quantitative scales, and how these can be taken forward in new research as tools to generate the construction of new knowledge. I will first explore potential reasons why the presence of quantitative research in the leading generic adult education journals is so limited.

This chapter is a revised version of a previousely published article: Boeren, E. (2018) The Methodological Underdog: A Review of Quantitative Research in the Key Adult Education Journals. Adult Education Quarterly , 68(1), 63–79.

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Because of the word limit of this book chapter, it will be impossible to discuss each survey and its questionnaire in detail. However, both the OECD’s PIAAC and the Eurostat website contain detailed documentation relating to their surveys and can be consulted for free.

See http://www.h2020enliven.org

For example the Essex Summer School in Social Science Data Analysis (see http://www.essex.ac.uk/summerschool /)

Andres, L. (2014). Designing and doing survey research . London: SAGE.

Google Scholar  

Bath, D., & Smith, C. (2009). The relationship between epistemological beliefs and the propensity for lifelong learning. Studies in Continuing Education, 31 (2), 173–189.

Article   Google Scholar  

Bathmaker, A. M. (2007). The impact of Skills for Life on adult basic skills in England: How should we interpret trends in participation and achievement? International Journal of Lifelong Education, 26 (3), 295–313.

Blunt, A., & Yang, B. (2002). Factor structure of the adult attitudes toward adult and continuing education scale and its capacity to predict participation behaviour: Evidence for adoption of a revised scale. Adult Education Quarterly, 52 (4), 299–314.

Boeren, E. (2011). Gender differences in formal, non-formal and informal adult learning. Studies in Continuing Education, 33 (3), 333–346.

Boeren, E. (2016). Lifelong learning participation in a changing policy context, an interdisciplinary theory . Baskingstoke: Palgrave-Macmillan.

Boeren, E., & Holford, J. (2016). Vocationalism varies (a lot): A 12-country multivariate analysis of participation in formal adult learning. Adult Education Quarterly, 66 (2), 120–142.

Boshier, R., Huang, Y., Song, Q., & Song, L. (2006). Market socialism meets the lost generation: Motivational orientations of adult learners in Shanghai. Adult Education Quarterly, 56 (3), 201–222.

Boshier, R. W. (1971). Motivational orientations of adult education participants: A factor analytic exploration of Houle’s typology. Adult Education, 21 , 3–26.

Boyadjieva, P., & Ilieva-Trichkova, P. (2017). Between inclusion and fairness: Social justice perspective to participation in adult education. Adult Education Quarterly, 67 (2), 97–117.

Brinkmann, S., & Kvale, S. (2014). Interviews: Learning the craft of qualitative research interviewing . London: SAGE.

Broek, S., & Hake, B. (2012). Increasing participation of adults in higher education: Factors for successful policies. International Journal of Lifelong Education, 31 (4), 397–417.

Bryman, A. (2012). Social research methods . Oxford: Oxford University Press.

Carney-Crompton, S., & Tan, J. (2002). Support systems, psychological functioning, and academic performance of non-traditional female students. Adult Education Quarterly, 52 (2), 140–154.

Cohen, L., Manion, L., & Morrison, K. (2011). Research methods in education . London: Routledge.

Creswell, J. (2003). Research design: Qualitative, quantitative, and mixed methods approaches . Thousand Oaks: SAGE.

Daley, B., Martin, L., & Roessger, K. (2018). A call for methodological plurality: Reconsidering research approaches in adult education. Adult Education Quarterly, 68 (2), 157–169.

Denzin, N. K., & Lincoln, Y. S. (2003). Handbook of qualitative research . London: SAGE.

Desjardins, R., Rubenson, K., & Milana, M. (2006). Unequal chances to participate in adult learning, international perspectives . Paris: UNESCO.

Desrosières, A. (1998). The politics of large numbers: A history ofstatistical reasoning . Cambridge, MA: Harvard University Press.

Ercikan, K., & Roth, W. (2006). What good is polarizing research into qualitative and quantitative? Educational Researcher, 35 (5), 14–23.

Evers, A., Kreijns, K., & Van der Heijden, B. (2016). The design and validation of an instrument to measure teachers’ professional development at work. Studies in Continuing Education, 38 (2), 162–178.

Fejes, A., & Nylander, E. (2015). How pluralistic is the research field on adult education? Dominating bibliometrical trends, 2005–2012. European Journal for Research on the Education and Learning of Adults, 6 (2), 103–123.

Fink, A. (1995). How to ask survey questions, the survey kit . London: SAGE.

Fishbein, M., & Ajzen, I. (1975). Belief, attitude, intention and behaviour . Redding, MA: Addison-Wesley.

Gage, N. (1989). The paradigm wars and their aftermath. Teachers College Record, 91 (2), 135–150.

Giancola, J., Munz, D., & Trares, S. (2008). First- versus continuing-generation adult students on college perceptions: Are differences actually because of demographic variance? Adult Education Quarterly, 58 (3), 214–228.

Guglielmino, L. (1977). Development of the self-directed learning readiness scale – Doctoral dissertation . Athens: University of Georgia.

Harvey, B., Rothman, A., & Frecker, R. (2006). A confirmatory factor analysis of the Oddi Continuing Learning Inventory (OCLI). Adult Education Quarterly, 56 (3), 188–200.

Hendricks, S. (2001). Contextual and individual factors and the use of influencing tactics in adult education program planning. Adult Education Quarterly, 51 (3), 219–235.

Holford, J., & Mohorcic-Spolar, V. (2012). Neoliberal and inclusive themes in European lifelong learning policy. In S. Riddell, J. Markowitsch, & E. Weedon (Eds.), Lifelong learning in Europe: Equity and efficiency in the balance (pp. 39–62). Bristol: Policy Press.

Chapter   Google Scholar  

Houle, C. O. (1961). The inquiring mind . Wisconsin-Madisson: University of Wisconsin.

Isaac, E., Guy, T., & Valentine, T. (2001). Understanding African American learners’ motivations to learn in church-based adult education. Adult Education Quarterly, 52 (1), 23–38.

Jameson, M., & Fusco, B. (2014). Math anxiety, math self-concept, and math self-efficacy in adult learners compared to traditional undergraduate students. Adult Education Quarterly, 64 (4), 306–322.

Johnson, R., Onwuegbuzie, A., & Turner, A. (2007). Toward a definition of mixed methods research. Journal of Mixed Methods Research, 1 (2), 122–133.

Justice, E., & Dornan, T. (2001). Metacognitive differences between traditional-age and non-traditional-age college students. Adult Education Quarterly, 51 (3), 236–249.

Krupar, A., Horvatek, R., & Byun, S. (2017). Does nonformal education matter? Nonformal education, immigration, and skills in Canada. Adult Education Quarterly, 67 (3), 186–208.

Lavrijsen, J., & Nicaise, I. (2017). Systemic obstacles to lifelong learning: The influence of the educational system design on learning attitudes. Studies in Continuing Education, 39 (2), 176–196.

Lee, S. (2014a). Korean mature women students’ various subjectivities in relation to their motivation for higher education: Generational differences amongst women. International Journal of Lifelong Education, 33 (6), 791–810.

Lee, W. (2014b). Opening up a road to somewhere: Development of associate degree students in Hong Kong. International Journal of Lifelong Education, 33 (5), 607–624.

Likert, R. (1929). A technique for the measurement of attitudes . New York: Columbia University.

Lizzio, A., Stokes, L., & Wilson, K. (2005). Approaches to learning in professional supervision: Supervisee perceptions of processes and outcome. Studies in Continuing Education, 27 (3), 239–256.

McFarland, D. A., Lewis, K., & Goldberg, A. (2016). Sociology in the era of big data: The ascent of forensic social science. The American Sociologist, 47 (12), 9291–9298.

Mulenga, D., & Liang, J.-S. (2008). Motivations for older adults’ participation in distance education: A study at the National Open University of Taiwan. International Journal of Lifelong Education, 27 (3), 289–314.

Piirainen, A., & Viitanen, E. (2010). Transforming expertise from individual to regional community expertise: A four-year study of an education intervention. International Journal of Lifelong Education, 29 (5), 581–596.

Porras-Hernandez, L. H., & Salinas-Amescua, B. (2012). Nonparticipation in adult education: From self-perceptions to alternative explanations. Adult Education Quarterly, 62 (4), 311–331.

Robson, C. (2011). Real world research . Chichester: Wiley.

Roosmaa, E. L., & Saar, E. (2012). Participation in non-formal learning in EU-15 and EU-8 countries: Demand and supply side factors. International Journal of Lifelong Education, 31 (4), 477–501.

Rothes, A., Lemos, M., & Gonçalves, T. (2017). Motivational profiles of adult learners. Adult Education Quarterly, 67 (1), 3–29.

Rubenson, K., & Desjardins, R. (2009). The impact of welfare state regimes on constraints to participation in adult education. A bounded agency model. Adult Education Quarterly, 59 (3), 187–207.

Sellitz, C., Wrightsman, L. S., & Cook, S. W. (1976). Research methods in social relations . New York: Holt, Rinehart & Winston.

Smith, E. (2008). Using secondary data in educational and social research . New York: McGraw-Hill Education.

Steele, B. (1984). The motivational orientations of persisting older learners in the university setting . University of Arkansas. Unpublished doctoral dissertation.

Stockdale, S., & Brockett, R. (2011). Development of the PRO-SDLS: A measurement of self-direction in learning based on the personal responsibility orientation model. Adult Education Quarterly, 61 (2), 161–180.

Tam, M. (2016). Later life learning experiences: Listening to the voices of Chinese elders in Hong Kong. International Journal of Lifelong Education, 35 (5), 569–585.

Tam, M., & Chui, E. (2016). Ageing and learning: What do they mean to elders themselves? Studies in Continuing Education, 38 (2), 195–212.

Teddlie, C., & Tashakkori, A. (2009). Foundations of mixed methods research . Thousand Oaks: SAGE.

Thomas, G. (2009). How to do your research project . London: SAGE.

Vainikainen, M., Wüstenberg, S., Kupiainen, S., Hotulainen, R., & Hautamäki, J. (2015). Development of learning to learn skills in primary school. International Journal of Lifelong Education, 34 (4), 376–392.

van Rhijn, T., & Lero, D. (2014). The influence of self-efficacy beliefs for student parents attending university. International Journal of Lifelong Education, 33 (4), 541–555.

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Boeren, E. (2019). Quantitative Research in Research on the Education and Learning of Adults. In: Fejes, A., Nylander, E. (eds) Mapping out the Research Field of Adult Education and Learning. Lifelong Learning Book Series, vol 24. Springer, Cham. https://doi.org/10.1007/978-3-030-10946-2_8

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In This Article Expand or collapse the "in this article" section Quantitative Research Designs in Educational Research

Introduction, general overviews.

  • Survey Research Designs
  • Correlational Designs
  • Other Nonexperimental Designs
  • Randomized Experimental Designs
  • Quasi-Experimental Designs
  • Single-Case Designs
  • Single-Case Analyses

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  • Methodologies for Conducting Education Research
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Quantitative Research Designs in Educational Research by James H. McMillan , Richard S. Mohn , Micol V. Hammack LAST REVIEWED: 29 July 2020 LAST MODIFIED: 24 July 2013 DOI: 10.1093/obo/9780199756810-0113

The field of education has embraced quantitative research designs since early in the 20th century. The foundation for these designs was based primarily in the psychological literature, and psychology and the social sciences more generally continued to have a strong influence on quantitative designs until the assimilation of qualitative designs in the 1970s and 1980s. More recently, a renewed emphasis on quasi-experimental and nonexperimental quantitative designs to infer causal conclusions has resulted in many newer sources specifically targeting these approaches to the field of education. This bibliography begins with a discussion of general introductions to all quantitative designs in the educational literature. The sources in this section tend to be textbooks or well-known sources written many years ago, though still very relevant and helpful. It should be noted that there are many other sources in the social sciences more generally that contain principles of quantitative designs that are applicable to education. This article then classifies quantitative designs primarily as either nonexperimental or experimental but also emphasizes the use of nonexperimental designs for making causal inferences. Among experimental designs the article distinguishes between those that include random assignment of subjects, those that are quasi-experimental (with no random assignment), and those that are single-case (single-subject) designs. Quasi-experimental and nonexperimental designs used for making causal inferences are becoming more popular in education given the practical difficulties and expense in conducting well-controlled experiments, particularly with the use of structural equation modeling (SEM). There have also been recent developments in statistical analyses that allow stronger causal inferences. Historically, quantitative designs have been tied closely to sampling, measurement, and statistics. In this bibliography there are important sources for newer statistical procedures that are needed for particular designs, especially single-case designs, but relatively little attention to sampling or measurement. The literature on quantitative designs in education is not well focused or comprehensively addressed in very many sources, except in general overview textbooks. Those sources that do include the range of designs are introductory in nature; more advanced designs and statistical analyses tend to be found in journal articles and other individual documents, with a couple exceptions. Another new trend in educational research designs is the use of mixed-method designs (both quantitative and qualitative), though this article does not emphasize these designs.

For many years there have been textbooks that present the range of quantitative research designs, both in education and the social sciences more broadly. Indeed, most of the quantitative design research principles are much the same for education, psychology, and other social sciences. These sources provide an introduction to basic designs that are used within the broader context of other educational research methodologies such as qualitative and mixed-method. Examples of these textbooks written specifically for education include Johnson and Christensen 2012 ; Mertens 2010 ; Arthur, et al. 2012 ; and Creswell 2012 . An example of a similar text written for the social sciences, including education that is dedicated only to quantitative research, is Gliner, et al. 2009 . In these texts separate chapters are devoted to different types of quantitative designs. For example, Creswell 2012 contains three quantitative design chapters—experimental, which includes both randomized and quasi-experimental designs; correlational (nonexperimental); and survey (also nonexperimental). Johnson and Christensen 2012 also includes three quantitative design chapters, with greater emphasis on quasi-experimental and single-subject research. Mertens 2010 includes a chapter on causal-comparative designs (nonexperimental). Often survey research is addressed as a distinct type of quantitative research with an emphasis on sampling and measurement (how to design surveys). Green, et al. 2006 also presents introductory chapters on different types of quantitative designs, but each of the chapters has different authors. In this book chapters extend basic designs by examining in greater detail nonexperimental methodologies structured for causal inferences and scaled-up experiments. Two additional sources are noted because they represent the types of publications for the social sciences more broadly that discuss many of the same principles of quantitative design among other types of designs. Bickman and Rog 2009 uses different chapter authors to cover topics such as statistical power for designs, sampling, randomized controlled trials, and quasi-experiments, and educational researchers will find this information helpful in designing their studies. Little 2012 provides a comprehensive coverage of topics related to quantitative methods in the social, behavioral, and education fields.

Arthur, James, Michael Waring, Robert Coe, and Larry V. Hedges, eds. 2012. Research methods & methodologies in education . Thousand Oaks, CA: SAGE.

Readers will find this book more of a handbook than a textbook. Different individuals author each of the chapters, representing quantitative, qualitative, and mixed-method designs. The quantitative chapters are on the treatment of advanced statistical applications, including analysis of variance, regression, and multilevel analysis.

Bickman, Leonard, and Debra J. Rog, eds. 2009. The SAGE handbook of applied social research methods . 2d ed. Thousand Oaks, CA: SAGE.

This handbook includes quantitative design chapters that are written for the social sciences broadly. There are relatively advanced treatments of statistical power, randomized controlled trials, and sampling in quantitative designs, though the coverage of additional topics is not as complete as other sources in this section.

Creswell, John W. 2012. Educational research: Planning, conducting, and evaluating quantitative and qualitative research . 4th ed. Boston: Pearson.

Creswell presents an introduction to all major types of research designs. Three chapters cover quantitative designs—experimental, correlational, and survey research. Both the correlational and survey research chapters focus on nonexperimental designs. Overall the introductions are complete and helpful to those beginning their study of quantitative research designs.

Gliner, Jeffrey A., George A. Morgan, and Nancy L. Leech. 2009. Research methods in applied settings: An integrated approach to design and analysis . 2d ed. New York: Routledge.

This text, unlike others in this section, is devoted solely to quantitative research. As such, all aspects of quantitative designs are covered. There are separate chapters on experimental, nonexperimental, and single-subject designs and on internal validity, sampling, and data-collection techniques for quantitative studies. The content of the book is somewhat more advanced than others listed in this section and is unique in its quantitative focus.

Green, Judith L., Gregory Camilli, and Patricia B. Elmore, eds. 2006. Handbook of complementary methods in education research . Mahwah, NJ: Lawrence Erlbaum.

Green, Camilli, and Elmore edited forty-six chapters that represent many contemporary issues and topics related to quantitative designs. Written by noted researchers, the chapters cover design experiments, quasi-experimentation, randomized experiments, and survey methods. Other chapters include statistical topics that have relevance for quantitative designs.

Johnson, Burke, and Larry B. Christensen. 2012. Educational research: Quantitative, qualitative, and mixed approaches . 4th ed. Thousand Oaks, CA: SAGE.

This comprehensive textbook of educational research methods includes extensive coverage of qualitative and mixed-method designs along with quantitative designs. Three of twenty chapters focus on quantitative designs (experimental, quasi-experimental, and single-case) and nonexperimental, including longitudinal and retrospective, designs. The level of material is relatively high, and there are introductory chapters on sampling and quantitative analyses.

Little, Todd D., ed. 2012. The Oxford handbook of quantitative methods . Vol. 1, Foundations . New York: Oxford Univ. Press.

This handbook is a relatively advanced treatment of quantitative design and statistical analyses. Multiple authors are used to address strengths and weaknesses of many different issues and methods, including advanced statistical tools.

Mertens, Donna M. 2010. Research and evaluation in education and psychology: Integrating diversity with quantitative, qualitative, and mixed methods . 3d ed. Thousand Oaks, CA: SAGE.

This textbook is an introduction to all types of educational designs and includes four chapters devoted to quantitative research—experimental and quasi-experimental, causal comparative and correlational, survey, and single-case research. The author’s treatment of some topics is somewhat more advanced than texts such as Creswell 2012 , with extensive attention to threats to internal validity for some of the designs.

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Quantitative Research in Education

Quantitative Research in Education A Primer

  • Wayne K. Hoy - Ohio State University, USA
  • Curt M. Adams - University of Oklahoma, USA
  • Description

“ The book provides a reference point for beginning educational researchers to grasp the most pertinent elements of designing and conducting research… ”

— Megan Tschannen-Moran, The College of William & Mary

Quantitative Research in Education: A Primer, Second Edition is a brief and practical text designed to allay anxiety about quantitative research. Award-winning authors Wayne K. Hoy and Curt M. Adams first introduce readers to the nature of research and science, and then present the meaning of concepts and research problems as they dispel notions that quantitative research is too difficult, too theoretical, and not practical. Rich with concrete examples and illustrations, the Primer emphasizes conceptual understanding and the practical utility of quantitative methods while teaching strategies and techniques for developing original research hypotheses.

The Second Edition includes suggestions for empirical investigation and features a new section on self-determination theory, examples from the latest research, a concluding chapter illustrating the practical applications of quantitative research, and much more. This accessible Primer is perfect for students and researchers who want a quick understanding of the process of scientific inquiry and who want to learn how to effectively create and test ideas.

See what’s new to this edition by selecting the Features tab on this page. Should you need additional information or have questions regarding the HEOA information provided for this title, including what is new to this edition, please email [email protected] . Please include your name, contact information, and the name of the title for which you would like more information. For information on the HEOA, please go to http://ed.gov/policy/highered/leg/hea08/index.html .

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“This text will definitely be useful in providing students with a solid orientation to research design particularly in quantitative research”

“Precision, precision, precision! I think this is a must have companion text for graduate students who have to complete a thesis or dissertation. The author does an outstanding job of cataloging and describing difficult research methods terms in a clear and concise way.”

“Greatest strength is the comprehensiveness of the treatment”

“A reference point for beginning educational researchers to grasp the most pertinent elements of designing and conducting research”

Provides all the essential information for quantitative research in a concise book.

A book on research in education but quite well can be accommodated into other social science areas. A great easy to follow publication especially if someone is new to statistical analysis.

There are two strong chapters in this publication that are clearer and more relevant that the sources presently being used by my students. Chapter 3 is particularly well written and clear and builds a progression in terms of understanding statistics. Chapter 4 is also effective however I would probably place this before Chapter 3. In terms of detail there is probably too much in Chapter 4 on Hypothesis whereas Chapter 3 could be developed perhaps by the inclusion of more examples.

Very helpful book that provides a basis for students undertaking education based research.

For those that are interested in doing research that is quantitative in nature, this book is useful, although we tend to advise a more qualitative approach. Therefore I can see myself dipping in and out of this book as it provides some good explanations and there is follow through. I would have welcomed more working examples as this would have concretised everything a lot more.

This is a good supplement to the research methods module, especially for those students who are entering into the field of education. The quantitative methods discussed are also transferrable to other subjects.

NEW TO THIS EDITION:    

  • A new chapter devoted to the practical applications of education research uses the concepts of collective trust, organizational climate, and improvement science to illustrate the utility of a quantitative approach. It also offers guidelines for analyzing and improving the practice of research in education.
  • New hypotheses found in a variety of research studies are available for readers to analyze and diagram.
  • A new section on self-determination theory has been added to demonstrate the relation between theory and practice.
  • A new section on self-regulatory climate gives readers an opportunity to explore an exciting new area that they are likely to encounter in practice.  
  • A conceptual description of Hierarchical Linear Modeling (HLM) has been added to help readers understand statistical data organized at more than one level.    

KEY FEATURES:  

  • Education-specific concrete examples bring concepts to life and engage readers with relevant, meaningful illustrations.
  • Check Your Understanding exercises and questions assess the reader’s ability to understand, value, and apply the content of the chapter.  
  • Strat egies and techniques for generating hypotheses help readers understand the process of creating their own hypotheses.
  • Key Terms are highlighted in the text when they first appear and then summarized in a list at the end of the chapter to help reinforce key concepts.
  • A Glossary concisely and clearly defines all the key terms in the text so readers have immediate access to ideas and concepts needing review.
  • Charts throughout the text allow readers to select appropriate statistical techniques for given scenarios.
  • The Diagramming Table (in Chapter 4) enables readers to diagram and dissect hypotheses by ensuring the key elements of a hypothesis are considered, analyzed, and understood.
  • An Elements of a Proposal section (Appendix A) gives readers directions for developing a quantitative research plan and motivates readers to get started—the most difficult step for many.
  • The A Few Writing Tips section (Appendix B) lists a number of salient writing suggestions to help readers avoid common mistakes found in formal writing.

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Quantitative research in education : Journals

  • Computers and education "Computers & Education aims to increase knowledge and understanding of ways in which digital technology can enhance education, through the publication of high-quality research, which extends theory and practice."
  • Journal of educational and behavioral statistics "Cosponsored by the American Statistical Association, the Journal of Educational and Behavioral Statistics (JEBS) publishes articles that are original and useful to those applying statistical approaches to problems and issues in educational or behavioral research. Typical papers present new methods of analysis."
  • Research in higher education "Research in Higher Education publishes studies that examine issues pertaining to postsecondary education. The journal is open to studies using a wide range of methods, but has particular interest in studies that apply advanced quantitative research methods to issues in postsecondary education or address postsecondary education policy issues."
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Current Issues and Trends in Special Education: Research, Technology, and Teacher Preparation

ISBN : 978-1-84950-954-1 , eISBN : 978-1-84950-955-8

Publication date: 23 April 2010

Quantitative research is based on epistemic beliefs that can be traced back to David Hume. Hume and others who followed in his wake suggested that we can never directly observe cause and effect. Rather we perceive what is called “constant conjunction” or the regularities of relationships among events. Through observing these regularities, we can develop generalizable laws that, once established, describe predictable patterns that can be replicated with reliability. This form of reasoning involves studying groups of individuals and is often called nomothetic and is contrasted with idiographic research that focuses on the uniqueness of the individual. It is clear that large-scale experiments with random assignment to treatment are based on nomothetic models, as are quasi-experimental studies where intact groups of people (e.g., students in a particular classroom) are assigned to treatments.

Brigham, F.J. (2010), "Chapter 1 Quantitative research in education: Impact on evidence-based instruction", Obiakor, F.E. , Bakken, J.P. and Rotatori, n.F. (Ed.) Current Issues and Trends in Special Education: Research, Technology, and Teacher Preparation ( Advances in Special Education, Vol. 20 ), Emerald Group Publishing Limited, Leeds, pp. 3-17. https://doi.org/10.1108/S0270-4013(2010)0000020004

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